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SHR Neuro Cancer Cardio Lipid Metab Microb

Klonoff, DC; Bergenstal, RM; Cengiz, E; Clements, MA; Espes, D; Espinoza, J; Kerr, D; Kovatchev, B; Maahs, DM; Mader, JK; Mathioudakis, N; Metwally, AA; Shah, SN; Sheng, B; Snyder, MP; Umpierrez, G; Shao, MM; Scheideman, AF; Ayers, AT; Ho, CN; Healey, E.
Continuous Glucose Monitoring Data Analysis 2.0: Functional Data Pattern Recognition and Artificial Intelligence Applications.
J Diabetes Sci Technol. 2025; 19(6):1515-1527 Doi: 10.1177/19322968251353228 [OPEN ACCESS]
Web of Science PubMed PUBMED Central FullText FullText_MUG

 

Co-authors Med Uni Graz
Mader Julia
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Abstract:
New methods of continuous glucose monitoring (CGM) data analysis are emerging that are valuable for interpreting CGM patterns and underlying metabolic physiology. These new methods use functional data analysis and artificial intelligence (AI), including machine learning (ML). Compared to traditional metrics for evaluating CGM tracing results (CGM Data Analysis 1.0), these new methods, which we refer to as CGM Data Analysis 2.0, can provide a more detailed understanding of glucose fluctuations and trends and enable more personalized and effective diabetes management strategies once translated into practical clinical solutions.
Find related publications in this database (using NLM MeSH Indexing)
Humans - administration & dosage
Blood Glucose Self-Monitoring - methods
Blood Glucose - analysis
Artificial Intelligence - administration & dosage
Machine Learning - administration & dosage
Pattern Recognition, Automated - methods
Diabetes Mellitus - blood
Continuous Glucose Monitoring - administration & dosage

Find related publications in this database (Keywords)
artificial intelligence
machine learning
pattern analysis
CGM
diabetes
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